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ML
2002
ACM

Choosing Multiple Parameters for Support Vector Machines

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Choosing Multiple Parameters for Support Vector Machines
The problem of automatically tuning multiple parameters for pattern recognition Support Vector Machines (SVMs) is considered. This is done by minimizing some estimates of the generalization error of SVMs using a gradient descent algorithm over the set of parameters. Usual methods for choosing parameters, based on exhaustive search become intractable as soon as the number of parameters exceeds two. Some experimental results assess the feasibility of our approach for a large number of parameters (more than 100) and demonstrate an improvement of generalization performance.
Olivier Chapelle, Vladimir Vapnik, Olivier Bousque
Added 22 Dec 2010
Updated 22 Dec 2010
Type Journal
Year 2002
Where ML
Authors Olivier Chapelle, Vladimir Vapnik, Olivier Bousquet, Sayan Mukherjee
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